Yuan QiuXiang LuoJianwei NiuXinzhong ZhuYiming Yao
Space-Air-Ground Integrated Network (SAGIN), which is considered a network architecture with great development potential, exhibits significant cross-domain collaboration characteristics at present. However, most of the existing works ignore the matching and adaptability of differential tasks and heterogeneous resources, resulting in significantly inefficient task execution and undesirable network performance. As a consequence, we formulate a category attribute-oriented resource allocation and task offloading optimization problem with the aim of minimizing the overall scheduling cost. We first introduce a task–resource matching matrix to facilitate optimal task offloading policies with computation resources. In addition, virtual queues are constructed to take the impacts of randomized task arrival into account. To solve the optimization objective which jointly considers bandwidth allocation, transmission power control and task offloading decision effectively, we proposed a deep reinforcement learning (DRL) algorithm framework considering type matching. Simulation experiments demonstrate the effectiveness of our proposed algorithm as well as superior performance compared to others.
Shilin LiYiming LiuXiaoqi QinZhi ZhangHang Li
Ming TangXinyun ChengZhikang WangYaqiao LiZhe Liu
Guo ZhangBaoxian ZhangShuo PengChen Liu
Wenji YangYanxiang FengYikang YangKeyi Xing